Patents by Inventor Nikola Jevtic

Nikola Jevtic has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 9760570
    Abstract: A system and method for disambiguating references to entities in a document. In one embodiment, an iterative process is used to disambiguate references to entities in documents. An initial model is used to identify documents referring to an entity based on features contained in those documents. The occurrence of various features in these documents is measured. From the number occurrences of features in these documents, a second model is constructed. The second model is used to identify documents referring to the entity based on features contained in the documents. The process can be repeated, iteratively identifying documents referring to the entity and improving subsequent models based on those identifications. Additional features of the entity can be extracted from documents identified as referring to the entity.
    Type: Grant
    Filed: June 9, 2014
    Date of Patent: September 12, 2017
    Assignee: Google Inc.
    Inventors: Leonardo A. Laroco, Jr., Nikola Jevtic, Nikolai V. Yakovenko, Jeffrey Reynar
  • Patent number: 9195997
    Abstract: Systems, methods, and computer-readable storage media that may be used to generate representative sample images for content campaigns are provided. One method includes identifying a resource in which a content campaign item has been previously displayed. The method further includes determining a content slot within the resource in which the content campaign item was previously displayed. The content slot is determined based on a slot signature associated with the content slot. The method further includes retrieving a current version of the resource, where the current version of the resource includes a current content item appearing in the content slot. The method further includes generating a representative image of the resource that includes the content campaign item by replacing the current content item appearing in the content slot within the current version of the resource with the content campaign item.
    Type: Grant
    Filed: January 10, 2014
    Date of Patent: November 24, 2015
    Assignee: Google Inc.
    Inventors: Nikola Jevtic, Zhaosheng (Josh) Bao, William David Reardon, Max David Cohen
  • Publication number: 20150199731
    Abstract: Systems, methods, and computer-readable storage media that may be used to generate representative sample images for content campaigns are provided. One method includes identifying a resource in which a content campaign item has been previously displayed. The method further includes determining a content slot within the resource in which the content campaign item was previously displayed. The content slot is determined based on a slot signature associated with the content slot. The method further includes retrieving a current version of the resource, where the current version of the resource includes a current content item appearing in the content slot. The method further includes generating a representative image of the resource that includes the content campaign item by replacing the current content item appearing in the content slot within the current version of the resource with the content campaign item.
    Type: Application
    Filed: January 10, 2014
    Publication date: July 16, 2015
    Applicant: Google Inc.
    Inventors: Nikola Jevtic, Zhaosheng (Josh) Bao, William David Reardon, Max David Cohen
  • Publication number: 20140379743
    Abstract: A system and method for disambiguating references to entities in a document. In one embodiment, an iterative process is used to disambiguate references to entities in documents. An initial model is used to identify documents referring to an entity based on features contained in those documents. The occurrence of various features in these documents is measured. From the number occurrences of features in these documents, a second model is constructed. The second model is used to identify documents referring to the entity based on features contained in the documents. The process can be repeated, iteratively identifying documents referring to the entity and improving subsequent models based on those identifications. Additional features of the entity can be extracted from documents identified as referring to the entity.
    Type: Application
    Filed: August 12, 2014
    Publication date: December 25, 2014
    Inventors: Leonardo A. Laroco, Jr., Nikola Jevtic, Nikolai V. Yakovenko, Jeffrey Reynar
  • Publication number: 20140289177
    Abstract: A system and method for disambiguating references to entities in a document. In one embodiment, an iterative process is used to disambiguate references to entities in documents. An initial model is used to identify documents referring to an entity based on features contained in those documents. The occurrence of various features in these documents is measured. From the number occurrences of features in these documents, a second model is constructed. The second model is used to identify documents referring to the entity based on features contained in the documents. The process can be repeated, iteratively identifying documents referring to the entity and improving subsequent models based on those identifications. Additional features of the entity can be extracted from documents identified as referring to the entity.
    Type: Application
    Filed: June 9, 2014
    Publication date: September 25, 2014
    Inventors: Leonardo A. Laroco, JR., Nikola Jevtic, Nikolai V. Yakovenko, Jeffrey Reynar
  • Patent number: 8751498
    Abstract: A system and method for disambiguating references to entities in a document. In one embodiment, an iterative process is used to disambiguate references to entities in documents. An initial model is used to identify documents referring to an entity based on features contained in those documents. The occurrence of various features in these documents is measured. From the number occurrences of features in these documents, a second model is constructed. The second model is used to identify documents referring to the entity based on features contained in the documents. The process can be repeated, iteratively identifying documents referring to the entity and improving subsequent models based on those identifications. Additional features of the entity can be extracted from documents identified as referring to the entity.
    Type: Grant
    Filed: February 1, 2012
    Date of Patent: June 10, 2014
    Assignee: Google Inc.
    Inventors: Leonardo A. Laroco, Jr., Nikola Jevtic, Nikolai V. Yakovenko, Jeffrey Reynar
  • Publication number: 20120203777
    Abstract: A system and method for disambiguating references to entities in a document. In one embodiment, an iterative process is used to disambiguate references to entities in documents. An initial model is used to identify documents referring to an entity based on features contained in those documents. The occurrence of various features in these documents is measured. From the number occurrences of features in these documents, a second model is constructed. The second model is used to identify documents referring to the entity based on features contained in the documents. The process can be repeated, iteratively identifying documents referring to the entity and improving subsequent models based on those identifications. Additional features of the entity can be extracted from documents identified as referring to the entity.
    Type: Application
    Filed: February 1, 2012
    Publication date: August 9, 2012
    Inventors: Leonardo A. Laroco, JR., Nikola Jevtic, Nikolai V. Yakovenko, Jeffrey Reynar
  • Patent number: 8122026
    Abstract: A system and method for disambiguating references to entities in a document. In one embodiment, an iterative process is used to disambiguate references to entities in documents. An initial model is used to identify documents referring to an entity based on features contained in those documents. The occurrence of various features in these documents is measured. From the number occurrences of features in these documents, a second model is constructed. The second model is used to identify documents referring to the entity based on features contained in the documents. The process can be repeated, iteratively identifying documents referring to the entity and improving subsequent models based on those identifications. Additional features of the entity can be extracted from documents identified as referring to the entity.
    Type: Grant
    Filed: October 20, 2006
    Date of Patent: February 21, 2012
    Assignee: Google Inc.
    Inventors: Leonardo A. Laroco, Jr., Nikola Jevtic, Nikolai V. Yakovenko, Jeffrey Reynar
  • Patent number: 7958128
    Abstract: A corpus contains information including text from books and metadata about the books. The book texts mention entities of various types, such as location, date, event, and person entities. An entity importance engine analyzes the information in the corpus to identify the entities mentioned therein, and ranks the entities using query-independent importance scores. The importance scores can be based in part on the contexts in which the entities are mentioned by the books. A presentation engine enables searching of the corpus to identify books satisfying a search query. The presentation engine presents information about a designated book. Entities mentioned in the book are presented in a style selected to enhance comprehension and utility. For example, location entities can be presented on a map with markers showing the locations of the entities. The number of entities presented are limited and ordered based on the query-independent importance scores.
    Type: Grant
    Filed: July 15, 2010
    Date of Patent: June 7, 2011
    Assignee: Google Inc.
    Inventors: David Petrou, Chiu-Ki Chan, Daniel Loreto, Jeffrey C. Reynar, Nikola Jevtic
  • Publication number: 20100281034
    Abstract: A corpus contains information including text from books and metadata about the books. The book texts mention entities of various types, such as location, date, event, and person entities. An entity importance engine analyzes the information in the corpus to identify the entities mentioned therein, and ranks the entities using query-independent importance scores. The importance scores can be based in part on the contexts in which the entities are mentioned by the books. A presentation engine enables searching of the corpus to identify books satisfying a search query. The presentation engine presents information about a designated book. Entities mentioned in the book are presented in a style selected to enhance comprehension and utility. For example, location entities can be presented on a map with markers showing the locations of the entities. The number of entities presented are limited and ordered based on the query-independent importance scores.
    Type: Application
    Filed: July 15, 2010
    Publication date: November 4, 2010
    Applicant: Google Inc.
    Inventors: David Petrou, Chiu-Ki Chan, Daniel Loreto, Jeffrey C. Reynar, Nikola Jevtic
  • Patent number: 7783644
    Abstract: A corpus contains information including text from books and metadata about the books. The book texts mention entities of various types, such as location, date, event, and person entities. An entity importance engine analyzes the information in the corpus to identify the entities mentioned therein, and ranks the entities using query-independent importance scores. The importance scores can be based in part on the contexts in which the entities are mentioned by the books. A presentation engine enables searching of the corpus to identify books satisfying a search query. The presentation engine presents information about a designated book. Entities mentioned in the book are presented in a style selected to enhance comprehension and utility. For example, location entities can be presented on a map with markers showing the locations of the entities. The number of entities presented are limited and ordered based on the query-independent importance scores.
    Type: Grant
    Filed: December 13, 2006
    Date of Patent: August 24, 2010
    Assignee: Google Inc.
    Inventors: David Petrou, Chiu-Ki Chan, Daniel Loreto, Jeffrey C. Reynar, Nikola Jevtic